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Main Authors: Chen, Chacha, Jörke, Matthew, Goliński, Adam, Fedzechkina, Masha, Sapiro, Guillermo, Williamson, Sinead, Foti, Nicholas
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.06915
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author Chen, Chacha
Jörke, Matthew
Goliński, Adam
Fedzechkina, Masha
Sapiro, Guillermo
Williamson, Sinead
Foti, Nicholas
author_facet Chen, Chacha
Jörke, Matthew
Goliński, Adam
Fedzechkina, Masha
Sapiro, Guillermo
Williamson, Sinead
Foti, Nicholas
contents Modern AI systems are being deployed in complex domains such as medicine, science, and law, where it is important that they not only produce correct answers, but also represent and update uncertain beliefs about the world as new evidence arrives. We introduce the novel technique of studying LLMs as information processing rules and utilize the information processing gap to study the internal (in)consistencies of how LLMs update their probabilistic beliefs from evidence. Our extensive experiments evaluate multiple approaches in which LLMs can incorporate evidence into their beliefs. Some of these approaches produce (nearly) Bayesian updates; others seem to use a learned heuristic. Surprisingly, the non-Bayesian heuristic updates often outperform exact Bayesian computation in terms of downstream task performance -- indicating the LLMs' probabilistic models of the world are misspecified. Lastly, we show how our measure can provide diagnostics to identify issues with LLM-powered inferential systems.
format Preprint
id arxiv_https___arxiv_org_abs_2605_06915
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LLMs are not (consistently) Bayesian: Quantifying internal (in)consistencies of LLMs' probabilistic beliefs
Chen, Chacha
Jörke, Matthew
Goliński, Adam
Fedzechkina, Masha
Sapiro, Guillermo
Williamson, Sinead
Foti, Nicholas
Machine Learning
Modern AI systems are being deployed in complex domains such as medicine, science, and law, where it is important that they not only produce correct answers, but also represent and update uncertain beliefs about the world as new evidence arrives. We introduce the novel technique of studying LLMs as information processing rules and utilize the information processing gap to study the internal (in)consistencies of how LLMs update their probabilistic beliefs from evidence. Our extensive experiments evaluate multiple approaches in which LLMs can incorporate evidence into their beliefs. Some of these approaches produce (nearly) Bayesian updates; others seem to use a learned heuristic. Surprisingly, the non-Bayesian heuristic updates often outperform exact Bayesian computation in terms of downstream task performance -- indicating the LLMs' probabilistic models of the world are misspecified. Lastly, we show how our measure can provide diagnostics to identify issues with LLM-powered inferential systems.
title LLMs are not (consistently) Bayesian: Quantifying internal (in)consistencies of LLMs' probabilistic beliefs
topic Machine Learning
url https://arxiv.org/abs/2605.06915